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HS3-Bench: A Benchmark and Strong Baseline for Hyperspectral Semantic Segmentation in Driving Scenarios

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Semantic segmentation is an essential step for many vision applications in order to understand a scene and the objects within. Recent progress in hyperspectral imaging technology enables the application in driving scenarios and the hope is that the devices perceptive abilities provide an advantage over RGB-cameras. Even though some datasets exist, there is no standard benchmark available to systematically measure progress on this task and evaluate the benefit of hyperspectral data. In this paper, we work towards closing this gap by providing the HyperSpectral Semantic Segmentation benchmark (HS3-Bench). It combines annotated hyperspectral images from three driving scenario datasets and provides standardized metrics, implementations, and evaluation protocols. We use the benchmark to derive two strong baseline models that surpass the previous state-of-the-art performances with and without pre-training on the individual datasets. Further, our results indicate that the existing learning-based methods benefit more from leveraging additional RGB training data than from leveraging the additional hyperspectral channels. This poses important questions for future research on hyperspectral imaging for semantic segmentation in driving scenarios. Code to run the benchmark and the strong baseline approaches are available under https://github.com/nickstheisen/hyperseg.

Nick Theisen, Robin Bartsch, Dietrich Paulus, Peer Neubert• 2024

Related benchmarks

TaskDatasetResultRank
Hyperspectral Semantic SegmentationHyperspectral City 2.0 (test)
Mean Accuracy (mu)93.3
7
Hyperspectral Semantic SegmentationHSI Drive v2.0 (test)
Accuracy (mu)95.53
7
Semantic segmentationHCV2 HS3-Bench (test)
Overall Accuracy87.63
3
Semantic segmentationHyKo2 HS3-Bench (test)
OA86.72
3
Semantic segmentationHSI-Drive HS3-Bench (test)
OA96.08
3
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